2022
DOI: 10.1007/978-3-031-18523-6_8
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A Specificity-Preserving Generative Model for Federated MRI Translation

Abstract: MRI translation models learn a mapping from an acquired source contrast to an unavailable target contrast. Collaboration between institutes is essential to train translation models that can generalize across diverse datasets. That said, aggregating all imaging data and training a centralized model poses privacy problems. Recently, federated learning (FL) has emerged as a collaboration framework that enables decentralized training to avoid sharing of imaging data. However, FLtrained translation models can deter… Show more

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Cited by 5 publications
(1 citation statement)
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“…• C. Generator on server, GAN on clients: 5 papers [55,64,65,72,76] had a GAN on each client and a generator on the server. Usually, each client trains and sends generator parameters to the server, which aggregates them and sends them back, and so on.…”
Section: What Methods Have Been Used For Federated Synthesis?mentioning
confidence: 99%
“…• C. Generator on server, GAN on clients: 5 papers [55,64,65,72,76] had a GAN on each client and a generator on the server. Usually, each client trains and sends generator parameters to the server, which aggregates them and sends them back, and so on.…”
Section: What Methods Have Been Used For Federated Synthesis?mentioning
confidence: 99%